利用ARIMA模型预测风力发电的风速和风向

Eddie Yatiyana, S. Rajakaruna, A. Ghosh
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引用次数: 53

摘要

由于具有广泛的社会经济效益,风能在大型公用电网和小型微电网中都发挥着重要作用。因此,提高其可靠性和可用性是当前研究的一个新兴趋势。风速和风向的高度随机性导致风电预测精度差,可靠性差,电力系统成本增加,效率降低。大多数最新的研究主要集中在风速上,其预测误差高于行业预期。本文对风速和风向进行了分析,建立了一种基于统计模型的预报技术。本文采用自回归综合移动平均法建立了西澳大利亚州实测风的估计模型,得到了预测值。所得模型可用于提高风力发电系统的可靠性和质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Wind speed and direction forecasting for wind power generation using ARIMA model
Wind Power plays a major role in both large utility grids and small microgrids due to a wide range of socio-economic benefits. Due to this reason, current research has an emerging trend to enhance its reliability and usability. Highly random nature of the wind speed and direction leads to having a poor accuracy of wind power forecasting and thereby poor reliability, increased cost and reduced efficiency of electrical systems. Most updated studies are focused mainly on wind speed, and their prediction errors are above the industry expectations. In this paper, both the wind speed and wind direction are analyzed to develop a statistical model based forecasting technique. This paper uses an Autoregressive Integrated Moving Average method to build the estimating model for wind measured in Western Australia to yield the forecasted values. The resultant model can be used to improve the system reliability, quality of the wind power generation system.
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